// Ceres Solver - A fast non-linear least squares minimizer | |
// Copyright 2019 Google Inc. All rights reserved. | |
// http://ceres-solver.org/ | |
// | |
// Redistribution and use in source and binary forms, with or without | |
// modification, are permitted provided that the following conditions are met: | |
// | |
// * Redistributions of source code must retain the above copyright notice, | |
// this list of conditions and the following disclaimer. | |
// * Redistributions in binary form must reproduce the above copyright notice, | |
// this list of conditions and the following disclaimer in the documentation | |
// and/or other materials provided with the distribution. | |
// * Neither the name of Google Inc. nor the names of its contributors may be | |
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// specific prior written permission. | |
// | |
// THIS SOFTWARE IS PROVIDED BY THE COPYRIGHT HOLDERS AND CONTRIBUTORS "AS IS" | |
// AND ANY EXPRESS OR IMPLIED WARRANTIES, INCLUDING, BUT NOT LIMITED TO, THE | |
// IMPLIED WARRANTIES OF MERCHANTABILITY AND FITNESS FOR A PARTICULAR PURPOSE | |
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// CONTRACT, STRICT LIABILITY, OR TORT (INCLUDING NEGLIGENCE OR OTHERWISE) | |
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// POSSIBILITY OF SUCH DAMAGE. | |
// | |
// Author: sameeragarwal@google.com (Sameer Agarwal) | |
namespace ceres { | |
// Interface for non-linear least squares solvers. | |
class CERES_EXPORT Solver { | |
public: | |
virtual ~Solver(); | |
// The options structure contains, not surprisingly, options that control how | |
// the solver operates. The defaults should be suitable for a wide range of | |
// problems; however, better performance is often obtainable with tweaking. | |
// | |
// The constants are defined inside types.h | |
struct CERES_EXPORT Options { | |
// Returns true if the options struct has a valid | |
// configuration. Returns false otherwise, and fills in *error | |
// with a message describing the problem. | |
bool IsValid(std::string* error) const; | |
// Minimizer options ---------------------------------------- | |
// Ceres supports the two major families of optimization strategies - | |
// Trust Region and Line Search. | |
// | |
// 1. The line search approach first finds a descent direction | |
// along which the objective function will be reduced and then | |
// computes a step size that decides how far should move along | |
// that direction. The descent direction can be computed by | |
// various methods, such as gradient descent, Newton's method and | |
// Quasi-Newton method. The step size can be determined either | |
// exactly or inexactly. | |
// | |
// 2. The trust region approach approximates the objective | |
// function using a model function (often a quadratic) over | |
// a subset of the search space known as the trust region. If the | |
// model function succeeds in minimizing the true objective | |
// function the trust region is expanded; conversely, otherwise it | |
// is contracted and the model optimization problem is solved | |
// again. | |
// | |
// Trust region methods are in some sense dual to line search methods: | |
// trust region methods first choose a step size (the size of the | |
// trust region) and then a step direction while line search methods | |
// first choose a step direction and then a step size. | |
MinimizerType minimizer_type = TRUST_REGION; | |
LineSearchDirectionType line_search_direction_type = LBFGS; | |
LineSearchType line_search_type = WOLFE; | |
NonlinearConjugateGradientType nonlinear_conjugate_gradient_type = | |
FLETCHER_REEVES; | |
// The LBFGS hessian approximation is a low rank approximation to | |
// the inverse of the Hessian matrix. The rank of the | |
// approximation determines (linearly) the space and time | |
// complexity of using the approximation. Higher the rank, the | |
// better is the quality of the approximation. The increase in | |
// quality is however is bounded for a number of reasons. | |
// | |
// 1. The method only uses secant information and not actual | |
// derivatives. | |
// | |
// 2. The Hessian approximation is constrained to be positive | |
// definite. | |
// | |
// So increasing this rank to a large number will cost time and | |
// space complexity without the corresponding increase in solution | |
// quality. There are no hard and fast rules for choosing the | |
// maximum rank. The best choice usually requires some problem | |
// specific experimentation. | |
// | |
// For more theoretical and implementation details of the LBFGS | |
// method, please see: | |
// | |
// Nocedal, J. (1980). "Updating Quasi-Newton Matrices with | |
// Limited Storage". Mathematics of Computation 35 (151): 773-782. | |
int max_lbfgs_rank = 20; | |
// As part of the (L)BFGS update step (BFGS) / right-multiply step (L-BFGS), | |
// the initial inverse Hessian approximation is taken to be the Identity. | |
// However, Oren showed that using instead I * \gamma, where \gamma is | |
// chosen to approximate an eigenvalue of the true inverse Hessian can | |
// result in improved convergence in a wide variety of cases. Setting | |
// use_approximate_eigenvalue_bfgs_scaling to true enables this scaling. | |
// | |
// It is important to note that approximate eigenvalue scaling does not | |
// always improve convergence, and that it can in fact significantly degrade | |
// performance for certain classes of problem, which is why it is disabled | |
// by default. In particular it can degrade performance when the | |
// sensitivity of the problem to different parameters varies significantly, | |
// as in this case a single scalar factor fails to capture this variation | |
// and detrimentally downscales parts of the jacobian approximation which | |
// correspond to low-sensitivity parameters. It can also reduce the | |
// robustness of the solution to errors in the jacobians. | |
// | |
// Oren S.S., Self-scaling variable metric (SSVM) algorithms | |
// Part II: Implementation and experiments, Management Science, | |
// 20(5), 863-874, 1974. | |
bool use_approximate_eigenvalue_bfgs_scaling = false; | |
// Degree of the polynomial used to approximate the objective | |
// function. Valid values are BISECTION, QUADRATIC and CUBIC. | |
// | |
// BISECTION corresponds to pure backtracking search with no | |
// interpolation. | |
LineSearchInterpolationType line_search_interpolation_type = CUBIC; | |
// If during the line search, the step_size falls below this | |
// value, it is truncated to zero. | |
double min_line_search_step_size = 1e-9; | |
// Line search parameters. | |
// Solving the line search problem exactly is computationally | |
// prohibitive. Fortunately, line search based optimization | |
// algorithms can still guarantee convergence if instead of an | |
// exact solution, the line search algorithm returns a solution | |
// which decreases the value of the objective function | |
// sufficiently. More precisely, we are looking for a step_size | |
// s.t. | |
// | |
// f(step_size) <= f(0) + sufficient_decrease * f'(0) * step_size | |
// | |
double line_search_sufficient_function_decrease = 1e-4; | |
// In each iteration of the line search, | |
// | |
// new_step_size >= max_line_search_step_contraction * step_size | |
// | |
// Note that by definition, for contraction: | |
// | |
// 0 < max_step_contraction < min_step_contraction < 1 | |
// | |
double max_line_search_step_contraction = 1e-3; | |
// In each iteration of the line search, | |
// | |
// new_step_size <= min_line_search_step_contraction * step_size | |
// | |
// Note that by definition, for contraction: | |
// | |
// 0 < max_step_contraction < min_step_contraction < 1 | |
// | |
double min_line_search_step_contraction = 0.6; | |
// Maximum number of trial step size iterations during each line | |
// search, if a step size satisfying the search conditions cannot | |
// be found within this number of trials, the line search will | |
// terminate. | |
// The minimum allowed value is 0 for trust region minimizer and 1 | |
// otherwise. If 0 is specified for the trust region minimizer, | |
// then line search will not be used when solving constrained | |
// optimization problems. | |
int max_num_line_search_step_size_iterations = 20; | |
// Maximum number of restarts of the line search direction algorithm before | |
// terminating the optimization. Restarts of the line search direction | |
// algorithm occur when the current algorithm fails to produce a new descent | |
// direction. This typically indicates a numerical failure, or a breakdown | |
// in the validity of the approximations used. | |
int max_num_line_search_direction_restarts = 5; | |
// The strong Wolfe conditions consist of the Armijo sufficient | |
// decrease condition, and an additional requirement that the | |
// step-size be chosen s.t. the _magnitude_ ('strong' Wolfe | |
// conditions) of the gradient along the search direction | |
// decreases sufficiently. Precisely, this second condition | |
// is that we seek a step_size s.t. | |
// | |
// |f'(step_size)| <= sufficient_curvature_decrease * |f'(0)| | |
// | |
// Where f() is the line search objective and f'() is the derivative | |
// of f w.r.t step_size (d f / d step_size). | |
double line_search_sufficient_curvature_decrease = 0.9; | |
// During the bracketing phase of the Wolfe search, the step size is | |
// increased until either a point satisfying the Wolfe conditions is | |
// found, or an upper bound for a bracket containing a point satisfying | |
// the conditions is found. Precisely, at each iteration of the | |
// expansion: | |
// | |
// new_step_size <= max_step_expansion * step_size. | |
// | |
// By definition for expansion, max_step_expansion > 1.0. | |
double max_line_search_step_expansion = 10.0; | |
TrustRegionStrategyType trust_region_strategy_type = LEVENBERG_MARQUARDT; | |
// Type of dogleg strategy to use. | |
DoglegType dogleg_type = TRADITIONAL_DOGLEG; | |
// The classical trust region methods are descent methods, in that | |
// they only accept a point if it strictly reduces the value of | |
// the objective function. | |
// | |
// Relaxing this requirement allows the algorithm to be more | |
// efficient in the long term at the cost of some local increase | |
// in the value of the objective function. | |
// | |
// This is because allowing for non-decreasing objective function | |
// values in a principled manner allows the algorithm to "jump over | |
// boulders" as the method is not restricted to move into narrow | |
// valleys while preserving its convergence properties. | |
// | |
// Setting use_nonmonotonic_steps to true enables the | |
// non-monotonic trust region algorithm as described by Conn, | |
// Gould & Toint in "Trust Region Methods", Section 10.1. | |
// | |
// The parameter max_consecutive_nonmonotonic_steps controls the | |
// window size used by the step selection algorithm to accept | |
// non-monotonic steps. | |
// | |
// Even though the value of the objective function may be larger | |
// than the minimum value encountered over the course of the | |
// optimization, the final parameters returned to the user are the | |
// ones corresponding to the minimum cost over all iterations. | |
bool use_nonmonotonic_steps = false; | |
int max_consecutive_nonmonotonic_steps = 5; | |
// Maximum number of iterations for the minimizer to run for. | |
int max_num_iterations = 50; | |
// Maximum time for which the minimizer should run for. | |
double max_solver_time_in_seconds = 1e9; | |
// Number of threads used by Ceres for evaluating the cost and | |
// jacobians. | |
int num_threads = 1; | |
// Trust region minimizer settings. | |
double initial_trust_region_radius = 1e4; | |
double max_trust_region_radius = 1e16; | |
// Minimizer terminates when the trust region radius becomes | |
// smaller than this value. | |
double min_trust_region_radius = 1e-32; | |
// Lower bound for the relative decrease before a step is | |
// accepted. | |
double min_relative_decrease = 1e-3; | |
// For the Levenberg-Marquadt algorithm, the scaled diagonal of | |
// the normal equations J'J is used to control the size of the | |
// trust region. Extremely small and large values along the | |
// diagonal can make this regularization scheme | |
// fail. max_lm_diagonal and min_lm_diagonal, clamp the values of | |
// diag(J'J) from above and below. In the normal course of | |
// operation, the user should not have to modify these parameters. | |
double min_lm_diagonal = 1e-6; | |
double max_lm_diagonal = 1e32; | |
// Sometimes due to numerical conditioning problems or linear | |
// solver flakiness, the trust region strategy may return a | |
// numerically invalid step that can be fixed by reducing the | |
// trust region size. So the TrustRegionMinimizer allows for a few | |
// successive invalid steps before it declares NUMERICAL_FAILURE. | |
int max_num_consecutive_invalid_steps = 5; | |
// Minimizer terminates when | |
// | |
// (new_cost - old_cost) < function_tolerance * old_cost; | |
// | |
double function_tolerance = 1e-6; | |
// Minimizer terminates when | |
// | |
// max_i |x - Project(Plus(x, -g(x))| < gradient_tolerance | |
// | |
// This value should typically be 1e-4 * function_tolerance. | |
double gradient_tolerance = 1e-10; | |
// Minimizer terminates when | |
// | |
// |step|_2 <= parameter_tolerance * ( |x|_2 + parameter_tolerance) | |
// | |
double parameter_tolerance = 1e-8; | |
// Linear least squares solver options ------------------------------------- | |
LinearSolverType linear_solver_type = | |
DENSE_QR; | |
SPARSE_NORMAL_CHOLESKY; | |
// Type of preconditioner to use with the iterative linear solvers. | |
PreconditionerType preconditioner_type = JACOBI; | |
// Type of clustering algorithm to use for visibility based | |
// preconditioning. This option is used only when the | |
// preconditioner_type is CLUSTER_JACOBI or CLUSTER_TRIDIAGONAL. | |
VisibilityClusteringType visibility_clustering_type = CANONICAL_VIEWS; | |
// Subset preconditioner is a preconditioner for problems with | |
// general sparsity. Given a subset of residual blocks of a | |
// problem, it uses the corresponding subset of the rows of the | |
// Jacobian to construct a preconditioner. | |
// | |
// Suppose the Jacobian J has been horizontally partitioned as | |
// | |
// J = [P] | |
// [Q] | |
// | |
// Where, Q is the set of rows corresponding to the residual | |
// blocks in residual_blocks_for_subset_preconditioner. | |
// | |
// The preconditioner is the inverse of the matrix Q'Q. | |
// | |
// Obviously, the efficacy of the preconditioner depends on how | |
// well the matrix Q approximates J'J, or how well the chosen | |
// residual blocks approximate the non-linear least squares | |
// problem. | |
// | |
// If Solver::Options::preconditioner_type == SUBSET, then | |
// residual_blocks_for_subset_preconditioner must be non-empty. | |
std::unordered_set<ResidualBlockId> | |
residual_blocks_for_subset_preconditioner; | |
// Ceres supports using multiple dense linear algebra libraries for dense | |
// matrix factorizations. Currently EIGEN, LAPACK and CUDA are the valid | |
// choices. EIGEN is always available, LAPACK refers to the system BLAS + | |
// LAPACK library which may or may not be available. CUDA refers to Nvidia's | |
// GPU based dense linear algebra library, which may or may not be | |
// available. | |
// | |
// This setting affects the DENSE_QR, DENSE_NORMAL_CHOLESKY and DENSE_SCHUR | |
// solvers. For small to moderate sized problem EIGEN is a fine choice but | |
// for large problems, an optimized LAPACK + BLAS or CUDA implementation can | |
// make a substantial difference in performance. | |
DenseLinearAlgebraLibraryType dense_linear_algebra_library_type = EIGEN; | |
// Ceres supports using multiple sparse linear algebra libraries for sparse | |
// matrix ordering and factorizations. Currently, SUITE_SPARSE and CX_SPARSE | |
// are the valid choices, depending on whether they are linked into Ceres at | |
// build time. | |
SparseLinearAlgebraLibraryType sparse_linear_algebra_library_type = | |
SUITE_SPARSE; | |
EIGEN_SPARSE; | |
CX_SPARSE; | |
ACCELERATE_SPARSE; | |
NO_SPARSE; | |
// The order in which variables are eliminated in a linear solver | |
// can have a significant of impact on the efficiency and accuracy | |
// of the method. e.g., when doing sparse Cholesky factorization, | |
// there are matrices for which a good ordering will give a | |
// Cholesky factor with O(n) storage, where as a bad ordering will | |
// result in an completely dense factor. | |
// | |
// Ceres allows the user to provide varying amounts of hints to | |
// the solver about the variable elimination ordering to use. This | |
// can range from no hints, where the solver is free to decide the | |
// best possible ordering based on the user's choices like the | |
// linear solver being used, to an exact order in which the | |
// variables should be eliminated, and a variety of possibilities | |
// in between. | |
// | |
// Instances of the ParameterBlockOrdering class are used to | |
// communicate this information to Ceres. | |
// | |
// Formally an ordering is an ordered partitioning of the | |
// parameter blocks, i.e, each parameter block belongs to exactly | |
// one group, and each group has a unique non-negative integer | |
// associated with it, that determines its order in the set of | |
// groups. | |
// | |
// Given such an ordering, Ceres ensures that the parameter blocks in | |
// the lowest numbered group are eliminated first, and then the | |
// parameter blocks in the next lowest numbered group and so on. Within | |
// each group, Ceres is free to order the parameter blocks as it | |
// chooses. | |
// | |
// If nullptr, then all parameter blocks are assumed to be in the | |
// same group and the solver is free to decide the best | |
// ordering. | |
// | |
// e.g. Consider the linear system | |
// | |
// x + y = 3 | |
// 2x + 3y = 7 | |
// | |
// There are two ways in which it can be solved. First eliminating x | |
// from the two equations, solving for y and then back substituting | |
// for x, or first eliminating y, solving for x and back substituting | |
// for y. The user can construct three orderings here. | |
// | |
// {0: x}, {1: y} - eliminate x first. | |
// {0: y}, {1: x} - eliminate y first. | |
// {0: x, y} - Solver gets to decide the elimination order. | |
// | |
// Thus, to have Ceres determine the ordering automatically using | |
// heuristics, put all the variables in group 0 and to control the | |
// ordering for every variable, create groups 0..N-1, one per | |
// variable, in the desired order. | |
// | |
// Bundle Adjustment | |
// ----------------- | |
// | |
// A particular case of interest is bundle adjustment, where the user | |
// has two options. The default is to not specify an ordering at all, | |
// the solver will see that the user wants to use a Schur type solver | |
// and figure out the right elimination ordering. | |
// | |
// But if the user already knows what parameter blocks are points and | |
// what are cameras, they can save preprocessing time by partitioning | |
// the parameter blocks into two groups, one for the points and one | |
// for the cameras, where the group containing the points has an id | |
// smaller than the group containing cameras. | |
std::shared_ptr<ParameterBlockOrdering> linear_solver_ordering; | |
// Use an explicitly computed Schur complement matrix with | |
// ITERATIVE_SCHUR. | |
// | |
// By default this option is disabled and ITERATIVE_SCHUR | |
// evaluates matrix-vector products between the Schur | |
// complement and a vector implicitly by exploiting the algebraic | |
// expression for the Schur complement. | |
// | |
// The cost of this evaluation scales with the number of non-zeros | |
// in the Jacobian. | |
// | |
// For small to medium sized problems there is a sweet spot where | |
// computing the Schur complement is cheap enough that it is much | |
// more efficient to explicitly compute it and use it for evaluating | |
// the matrix-vector products. | |
// | |
// Enabling this option tells ITERATIVE_SCHUR to use an explicitly | |
// computed Schur complement. | |
// | |
// NOTE: This option can only be used with the SCHUR_JACOBI | |
// preconditioner. | |
bool use_explicit_schur_complement = false; | |
// Sparse Cholesky factorization algorithms use a fill-reducing | |
// ordering to permute the columns of the Jacobian matrix. There | |
// are two ways of doing this. | |
// 1. Compute the Jacobian matrix in some order and then have the | |
// factorization algorithm permute the columns of the Jacobian. | |
// 2. Compute the Jacobian with its columns already permuted. | |
// The first option incurs a significant memory penalty. The | |
// factorization algorithm has to make a copy of the permuted | |
// Jacobian matrix, thus Ceres pre-permutes the columns of the | |
// Jacobian matrix and generally speaking, there is no performance | |
// penalty for doing so. | |
// In some rare cases, it is worth using a more complicated | |
// reordering algorithm which has slightly better runtime | |
// performance at the expense of an extra copy of the Jacobian | |
// matrix. Setting use_postordering to true enables this tradeoff. | |
bool use_postordering = false; | |
// Some non-linear least squares problems are symbolically dense but | |
// numerically sparse. i.e. at any given state only a small number | |
// of jacobian entries are non-zero, but the position and number of | |
// non-zeros is different depending on the state. For these problems | |
// it can be useful to factorize the sparse jacobian at each solver | |
// iteration instead of including all of the zero entries in a single | |
// general factorization. | |
// | |
// If your problem does not have this property (or you do not know), | |
// then it is probably best to keep this false, otherwise it will | |
// likely lead to worse performance. | |
// This settings only affects the SPARSE_NORMAL_CHOLESKY solver. | |
bool dynamic_sparsity = false; | |
// TODO(sameeragarwal): Further expand the documentation for the | |
// following two options. | |
// NOTE1: EXPERIMENTAL FEATURE, UNDER DEVELOPMENT, USE AT YOUR OWN RISK. | |
// | |
// If use_mixed_precision_solves is true, the Gauss-Newton matrix | |
// is computed in double precision, but its factorization is | |
// computed in single precision. This can result in significant | |
// time and memory savings at the cost of some accuracy in the | |
// Gauss-Newton step. Iterative refinement is used to recover some | |
// of this accuracy back. | |
// | |
// If use_mixed_precision_solves is true, we recommend setting | |
// max_num_refinement_iterations to 2-3. | |
// | |
// NOTE2: The following two options are currently only applicable | |
// if sparse_linear_algebra_library_type is EIGEN_SPARSE or | |
// ACCELERATE_SPARSE, and linear_solver_type is SPARSE_NORMAL_CHOLESKY | |
// or SPARSE_SCHUR. | |
bool use_mixed_precision_solves = false; | |
// Number steps of the iterative refinement process to run when | |
// computing the Gauss-Newton step. | |
int max_num_refinement_iterations = 0; | |
// Some non-linear least squares problems have additional | |
// structure in the way the parameter blocks interact that it is | |
// beneficial to modify the way the trust region step is computed. | |
// | |
// e.g., consider the following regression problem | |
// | |
// y = a_1 exp(b_1 x) + a_2 exp(b_3 x^2 + c_1) | |
// | |
// Given a set of pairs{(x_i, y_i)}, the user wishes to estimate | |
// a_1, a_2, b_1, b_2, and c_1. | |
// | |
// Notice here that the expression on the left is linear in a_1 | |
// and a_2, and given any value for b_1, b_2 and c_1, it is | |
// possible to use linear regression to estimate the optimal | |
// values of a_1 and a_2. Indeed, its possible to analytically | |
// eliminate the variables a_1 and a_2 from the problem all | |
// together. Problems like these are known as separable least | |
// squares problem and the most famous algorithm for solving them | |
// is the Variable Projection algorithm invented by Golub & | |
// Pereyra. | |
// | |
// Similar structure can be found in the matrix factorization with | |
// missing data problem. There the corresponding algorithm is | |
// known as Wiberg's algorithm. | |
// | |
// Ruhe & Wedin (Algorithms for Separable Nonlinear Least Squares | |
// Problems, SIAM Reviews, 22(3), 1980) present an analysis of | |
// various algorithms for solving separable non-linear least | |
// squares problems and refer to "Variable Projection" as | |
// Algorithm I in their paper. | |
// | |
// Implementing Variable Projection is tedious and expensive, and | |
// they present a simpler algorithm, which they refer to as | |
// Algorithm II, where once the Newton/Trust Region step has been | |
// computed for the whole problem (a_1, a_2, b_1, b_2, c_1) and | |
// additional optimization step is performed to estimate a_1 and | |
// a_2 exactly. | |
// | |
// This idea can be generalized to cases where the residual is not | |
// linear in a_1 and a_2, i.e., Solve for the trust region step | |
// for the full problem, and then use it as the starting point to | |
// further optimize just a_1 and a_2. For the linear case, this | |
// amounts to doing a single linear least squares solve. For | |
// non-linear problems, any method for solving the a_1 and a_2 | |
// optimization problems will do. The only constraint on a_1 and | |
// a_2 is that they do not co-occur in any residual block. | |
// | |
// This idea can be further generalized, by not just optimizing | |
// (a_1, a_2), but decomposing the graph corresponding to the | |
// Hessian matrix's sparsity structure in a collection of | |
// non-overlapping independent sets and optimizing each of them. | |
// | |
// Setting "use_inner_iterations" to true enables the use of this | |
// non-linear generalization of Ruhe & Wedin's Algorithm II. This | |
// version of Ceres has a higher iteration complexity, but also | |
// displays better convergence behaviour per iteration. Setting | |
// Solver::Options::num_threads to the maximum number possible is | |
// highly recommended. | |
bool use_inner_iterations = false; | |
// If inner_iterations is true, then the user has two choices. | |
// | |
// 1. Let the solver heuristically decide which parameter blocks | |
// to optimize in each inner iteration. To do this leave | |
// Solver::Options::inner_iteration_ordering untouched. | |
// | |
// 2. Specify a collection of of ordered independent sets. Where | |
// the lower numbered groups are optimized before the higher | |
// number groups. Each group must be an independent set. Not | |
// all parameter blocks need to be present in the ordering. | |
std::shared_ptr<ParameterBlockOrdering> inner_iteration_ordering; | |
// Generally speaking, inner iterations make significant progress | |
// in the early stages of the solve and then their contribution | |
// drops down sharply, at which point the time spent doing inner | |
// iterations is not worth it. | |
// | |
// Once the relative decrease in the objective function due to | |
// inner iterations drops below inner_iteration_tolerance, the use | |
// of inner iterations in subsequent trust region minimizer | |
// iterations is disabled. | |
double inner_iteration_tolerance = 1e-3; | |
// Minimum number of iterations for which the linear solver should | |
// run, even if the convergence criterion is satisfied. | |
int min_linear_solver_iterations = 0; | |
// Maximum number of iterations for which the linear solver should | |
// run. If the solver does not converge in less than | |
// max_linear_solver_iterations, then it returns MAX_ITERATIONS, | |
// as its termination type. | |
int max_linear_solver_iterations = 500; | |
// Forcing sequence parameter. The truncated Newton solver uses | |
// this number to control the relative accuracy with which the | |
// Newton step is computed. | |
// | |
// This constant is passed to ConjugateGradientsSolver which uses | |
// it to terminate the iterations when | |
// | |
// (Q_i - Q_{i-1})/Q_i < eta/i | |
double eta = 1e-1; | |
// Normalize the jacobian using Jacobi scaling before calling | |
// the linear least squares solver. | |
bool jacobi_scaling = true; | |
// Logging options --------------------------------------------------------- | |
LoggingType logging_type = PER_MINIMIZER_ITERATION; | |
// By default the Minimizer progress is logged to VLOG(1), which | |
// is sent to STDERR depending on the vlog level. If this flag is | |
// set to true, and logging_type is not SILENT, the logging output | |
// is sent to STDOUT. | |
bool minimizer_progress_to_stdout = false; | |
// List of iterations at which the minimizer should dump the trust | |
// region problem. Useful for testing and benchmarking. If empty | |
// (default), no problems are dumped. | |
std::vector<int> trust_region_minimizer_iterations_to_dump; | |
// Directory to which the problems should be written to. Should be | |
// non-empty if trust_region_minimizer_iterations_to_dump is | |
// non-empty and trust_region_problem_dump_format_type is not | |
// CONSOLE. | |
std::string trust_region_problem_dump_directory = "/tmp"; | |
DumpFormatType trust_region_problem_dump_format_type = TEXTFILE; | |
// Finite differences options ---------------------------------------------- | |
// Check all jacobians computed by each residual block with finite | |
// differences. This is expensive since it involves computing the | |
// derivative by normal means (e.g. user specified, autodiff, | |
// etc), then also computing it using finite differences. The | |
// results are compared, and if they differ substantially, details | |
// are printed to the log. | |
bool check_gradients = false; | |
// Relative precision to check for in the gradient checker. If the | |
// relative difference between an element in a jacobian exceeds | |
// this number, then the jacobian for that cost term is dumped. | |
double gradient_check_relative_precision = 1e-8; | |
// WARNING: This option only applies to the to the numeric | |
// differentiation used for checking the user provided derivatives | |
// when when Solver::Options::check_gradients is true. If you are | |
// using NumericDiffCostFunction and are interested in changing | |
// the step size for numeric differentiation in your cost | |
// function, please have a look at | |
// include/ceres/numeric_diff_options.h. | |
// | |
// Relative shift used for taking numeric derivatives when | |
// Solver::Options::check_gradients is true. | |
// | |
// For finite differencing, each dimension is evaluated at | |
// slightly shifted values; for the case of central difference, | |
// this is what gets evaluated: | |
// | |
// delta = gradient_check_numeric_derivative_relative_step_size; | |
// f_initial = f(x) | |
// f_forward = f((1 + delta) * x) | |
// f_backward = f((1 - delta) * x) | |
// | |
// The finite differencing is done along each dimension. The | |
// reason to use a relative (rather than absolute) step size is | |
// that this way, numeric differentiation works for functions where | |
// the arguments are typically large (e.g. 1e9) and when the | |
// values are small (e.g. 1e-5). It is possible to construct | |
// "torture cases" which break this finite difference heuristic, | |
// but they do not come up often in practice. | |
// | |
// TODO(keir): Pick a smarter number than the default above! In | |
// theory a good choice is sqrt(eps) * x, which for doubles means | |
// about 1e-8 * x. However, I have found this number too | |
// optimistic. This number should be exposed for users to change. | |
double gradient_check_numeric_derivative_relative_step_size = 1e-6; | |
// If update_state_every_iteration is true, then Ceres Solver will | |
// guarantee that at the end of every iteration and before any | |
// user provided IterationCallback is called, the parameter blocks | |
// are updated to the current best solution found by the | |
// solver. Thus the IterationCallback can inspect the values of | |
// the parameter blocks for purposes of computation, visualization | |
// or termination. | |
// If update_state_every_iteration is false then there is no such | |
// guarantee, and user provided IterationCallbacks should not | |
// expect to look at the parameter blocks and interpret their | |
// values. | |
bool update_state_every_iteration = false; | |
// Callbacks that are executed at the end of each iteration of the | |
// Minimizer. An iteration may terminate midway, either due to | |
// numerical failures or because one of the convergence tests has | |
// been satisfied. In this case none of the callbacks are | |
// executed. | |
// Callbacks are executed in the order that they are specified in | |
// this vector. By default, parameter blocks are updated only at the | |
// end of the optimization, i.e when the Minimizer terminates. This | |
// behaviour is controlled by update_state_every_iteration. If the | |
// user wishes to have access to the updated parameter blocks when | |
// his/her callbacks are executed, then set | |
// update_state_every_iteration to true. | |
// | |
// The solver does NOT take ownership of these pointers. | |
std::vector<IterationCallback*> callbacks; | |
}; | |
struct CERES_EXPORT Summary { | |
// A brief one line description of the state of the solver after | |
// termination. | |
std::string BriefReport() const; | |
// A full multiline description of the state of the solver after | |
// termination. | |
std::string FullReport() const; | |
bool IsSolutionUsable() const; | |
// Minimizer summary ------------------------------------------------- | |
MinimizerType minimizer_type = TRUST_REGION; | |
TerminationType termination_type = FAILURE; | |
// Reason why the solver terminated. | |
std::string message = "ceres::Solve was not called."; | |
// Cost of the problem (value of the objective function) before | |
// the optimization. | |
double initial_cost = -1.0; | |
// Cost of the problem (value of the objective function) after the | |
// optimization. | |
double final_cost = -1.0; | |
// The part of the total cost that comes from residual blocks that | |
// were held fixed by the preprocessor because all the parameter | |
// blocks that they depend on were fixed. | |
double fixed_cost = -1.0; | |
// IterationSummary for each minimizer iteration in order. | |
std::vector<IterationSummary> iterations; | |
// Number of minimizer iterations in which the step was | |
// accepted. Unless use_non_monotonic_steps is true this is also | |
// the number of steps in which the objective function value/cost | |
// went down. | |
int num_successful_steps = -1; | |
// Number of minimizer iterations in which the step was rejected | |
// either because it did not reduce the cost enough or the step | |
// was not numerically valid. | |
int num_unsuccessful_steps = -1; | |
// Number of times inner iterations were performed. | |
int num_inner_iteration_steps = -1; | |
// Total number of iterations inside the line search algorithm | |
// across all invocations. We call these iterations "steps" to | |
// distinguish them from the outer iterations of the line search | |
// and trust region minimizer algorithms which call the line | |
// search algorithm as a subroutine. | |
int num_line_search_steps = -1; | |
// All times reported below are wall times. | |
// When the user calls Solve, before the actual optimization | |
// occurs, Ceres performs a number of preprocessing steps. These | |
// include error checks, memory allocations, and reorderings. This | |
// time is accounted for as preprocessing time. | |
double preprocessor_time_in_seconds = -1.0; | |
// Time spent in the TrustRegionMinimizer. | |
double minimizer_time_in_seconds = -1.0; | |
// After the Minimizer is finished, some time is spent in | |
// re-evaluating residuals etc. This time is accounted for in the | |
// postprocessor time. | |
double postprocessor_time_in_seconds = -1.0; | |
// Some total of all time spent inside Ceres when Solve is called. | |
double total_time_in_seconds = -1.0; | |
// Time (in seconds) spent in the linear solver computing the | |
// trust region step. | |
double linear_solver_time_in_seconds = -1.0; | |
// Number of times the Newton step was computed by solving a | |
// linear system. This does not include linear solves used by | |
// inner iterations. | |
int num_linear_solves = -1; | |
// Time (in seconds) spent evaluating the residual vector. | |
double residual_evaluation_time_in_seconds = -1.0; | |
// Number of residual only evaluations. | |
int num_residual_evaluations = -1; | |
// Time (in seconds) spent evaluating the jacobian matrix. | |
double jacobian_evaluation_time_in_seconds = -1.0; | |
// Number of Jacobian (and residual) evaluations. | |
int num_jacobian_evaluations = -1; | |
// Time (in seconds) spent doing inner iterations. | |
double inner_iteration_time_in_seconds = -1.0; | |
// Cumulative timing information for line searches performed as part of the | |
// solve. Note that in addition to the case when the Line Search minimizer | |
// is used, the Trust Region minimizer also uses a line search when | |
// solving a constrained problem. | |
// Time (in seconds) spent evaluating the univariate cost function as part | |
// of a line search. | |
double line_search_cost_evaluation_time_in_seconds = -1.0; | |
// Time (in seconds) spent evaluating the gradient of the univariate cost | |
// function as part of a line search. | |
double line_search_gradient_evaluation_time_in_seconds = -1.0; | |
// Time (in seconds) spent minimizing the interpolating polynomial | |
// to compute the next candidate step size as part of a line search. | |
double line_search_polynomial_minimization_time_in_seconds = -1.0; | |
// Total time (in seconds) spent performing line searches. | |
double line_search_total_time_in_seconds = -1.0; | |
// Number of parameter blocks in the problem. | |
int num_parameter_blocks = -1; | |
// Number of parameters in the problem. | |
int num_parameters = -1; | |
// Dimension of the tangent space of the problem (or the number of | |
// columns in the Jacobian for the problem). This is different | |
// from num_parameters if a parameter block is associated with a | |
// LocalParameterization/Manifold. | |
int num_effective_parameters = -1; | |
// Number of residual blocks in the problem. | |
int num_residual_blocks = -1; | |
// Number of residuals in the problem. | |
int num_residuals = -1; | |
// Number of parameter blocks in the problem after the inactive | |
// and constant parameter blocks have been removed. A parameter | |
// block is inactive if no residual block refers to it. | |
int num_parameter_blocks_reduced = -1; | |
// Number of parameters in the reduced problem. | |
int num_parameters_reduced = -1; | |
// Dimension of the tangent space of the reduced problem (or the | |
// number of columns in the Jacobian for the reduced | |
// problem). This is different from num_parameters_reduced if a | |
// parameter block in the reduced problem is associated with a | |
// LocalParameterization/Manifold. | |
int num_effective_parameters_reduced = -1; | |
// Number of residual blocks in the reduced problem. | |
int num_residual_blocks_reduced = -1; | |
// Number of residuals in the reduced problem. | |
int num_residuals_reduced = -1; | |
// Is the reduced problem bounds constrained. | |
bool is_constrained = false; | |
// Number of threads specified by the user for Jacobian and | |
// residual evaluation. | |
int num_threads_given = -1; | |
// Number of threads actually used by the solver for Jacobian and | |
// residual evaluation. This number is not equal to | |
// num_threads_given if OpenMP is not available. | |
int num_threads_used = -1; | |
// Type of the linear solver requested by the user. | |
LinearSolverType linear_solver_type_given = | |
DENSE_QR; | |
SPARSE_NORMAL_CHOLESKY; | |
// Type of the linear solver actually used. This may be different | |
// from linear_solver_type_given if Ceres determines that the | |
// problem structure is not compatible with the linear solver | |
// requested or if the linear solver requested by the user is not | |
// available, e.g. The user requested SPARSE_NORMAL_CHOLESKY but | |
// no sparse linear algebra library was available. | |
LinearSolverType linear_solver_type_used = | |
DENSE_QR; | |
SPARSE_NORMAL_CHOLESKY; | |
// Size of the elimination groups given by the user as hints to | |
// the linear solver. | |
std::vector<int> linear_solver_ordering_given; | |
// Size of the parameter groups used by the solver when ordering | |
// the columns of the Jacobian. This maybe different from | |
// linear_solver_ordering_given if the user left | |
// linear_solver_ordering_given blank and asked for an automatic | |
// ordering, or if the problem contains some constant or inactive | |
// parameter blocks. | |
std::vector<int> linear_solver_ordering_used; | |
// For Schur type linear solvers, this string describes the | |
// template specialization which was detected in the problem and | |
// should be used. | |
std::string schur_structure_given; | |
// This is the Schur template specialization that was actually | |
// instantiated and used. The reason this will be different from | |
// schur_structure_given is because the corresponding template | |
// specialization does not exist. | |
// | |
// Template specializations can be added to ceres by editing | |
// internal/ceres/generate_template_specializations.py | |
std::string schur_structure_used; | |
// True if the user asked for inner iterations to be used as part | |
// of the optimization. | |
bool inner_iterations_given = false; | |
// True if the user asked for inner iterations to be used as part | |
// of the optimization and the problem structure was such that | |
// they were actually performed. e.g., in a problem with just one | |
// parameter block, inner iterations are not performed. | |
bool inner_iterations_used = false; | |
// Size of the parameter groups given by the user for performing | |
// inner iterations. | |
std::vector<int> inner_iteration_ordering_given; | |
// Size of the parameter groups given used by the solver for | |
// performing inner iterations. This maybe different from | |
// inner_iteration_ordering_given if the user left | |
// inner_iteration_ordering_given blank and asked for an automatic | |
// ordering, or if the problem contains some constant or inactive | |
// parameter blocks. | |
std::vector<int> inner_iteration_ordering_used; | |
// Type of the preconditioner requested by the user. | |
PreconditionerType preconditioner_type_given = IDENTITY; | |
// Type of the preconditioner actually used. This may be different | |
// from linear_solver_type_given if Ceres determines that the | |
// problem structure is not compatible with the linear solver | |
// requested or if the linear solver requested by the user is not | |
// available. | |
PreconditionerType preconditioner_type_used = IDENTITY; | |
// Type of clustering algorithm used for visibility based | |
// preconditioning. Only meaningful when the preconditioner_type | |
// is CLUSTER_JACOBI or CLUSTER_TRIDIAGONAL. | |
VisibilityClusteringType visibility_clustering_type = CANONICAL_VIEWS; | |
// Type of trust region strategy. | |
TrustRegionStrategyType trust_region_strategy_type = LEVENBERG_MARQUARDT; | |
// Type of dogleg strategy used for solving the trust region | |
// problem. | |
DoglegType dogleg_type = TRADITIONAL_DOGLEG; | |
// Type of the dense linear algebra library used. | |
DenseLinearAlgebraLibraryType dense_linear_algebra_library_type = EIGEN; | |
// Type of the sparse linear algebra library used. | |
SparseLinearAlgebraLibraryType sparse_linear_algebra_library_type = | |
NO_SPARSE; | |
// Type of line search direction used. | |
LineSearchDirectionType line_search_direction_type = LBFGS; | |
// Type of the line search algorithm used. | |
LineSearchType line_search_type = WOLFE; | |
// When performing line search, the degree of the polynomial used | |
// to approximate the objective function. | |
LineSearchInterpolationType line_search_interpolation_type = CUBIC; | |
// If the line search direction is NONLINEAR_CONJUGATE_GRADIENT, | |
// then this indicates the particular variant of non-linear | |
// conjugate gradient used. | |
NonlinearConjugateGradientType nonlinear_conjugate_gradient_type = | |
FLETCHER_REEVES; | |
// If the type of the line search direction is LBFGS, then this | |
// indicates the rank of the Hessian approximation. | |
int max_lbfgs_rank = -1; | |
}; | |
// Once a least squares problem has been built, this function takes | |
// the problem and optimizes it based on the values of the options | |
// parameters. Upon return, a detailed summary of the work performed | |
// by the preprocessor, the non-linear minimizer and the linear | |
// solver are reported in the summary object. | |
virtual void Solve(const Options& options, | |
Problem* problem, | |
Solver::Summary* summary); | |
}; | |
// Helper function which avoids going through the interface. | |
CERES_EXPORT void Solve(const Solver::Options& options, | |
Problem* problem, | |
Solver::Summary* summary); | |
} // namespace ceres | |